1 of 5 free roles viewed today. Upgrade to premium for unlimited from only $19.99 with a 2-day free trial.

Machine Learning Architect

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Machine Learning Architect with a contract length of "unknown," offering a pay rate of "$$$." Required skills include extensive experience in ML architecture, cloud platforms, and collaboration with stakeholders. A degree in Computer Science or related field is preferred.
🌎 - Country
United States
💱 - Currency
$ USD
💰 - Day rate
Unknown
Unknown
720
🗓️ - Date discovered
April 2, 2025
🕒 - Project duration
Unknown
🏝️ - Location type
Unknown
📄 - Contract type
Unknown
🔒 - Security clearance
Unknown
📍 - Location detailed
United States
🧠 - Skills detailed
#AWS (Amazon Web Services) #GIT #Compliance #Strategy #MLflow #Agile #Databricks #Python #Deployment #Batch #Data Pipeline #NoSQL #Big Data #Monitoring #Documentation #MongoDB #Azure #AI (Artificial Intelligence) #Data Governance #Model Deployment #PySpark #Data Quality #SQL (Structured Query Language) #ML (Machine Learning) #Cloud #Public Cloud #Spark (Apache Spark) #Distributed Computing #GCP (Google Cloud Platform) #Elasticsearch #Version Control #Data Science #DevOps #Data Ingestion #Computer Science #Scala #Security #Airflow #Kubernetes #Leadership #ML Ops (Machine Learning Operations)
Role description
You've reached your limit of 5 free role views today.
Upgrade to premium for unlimited access - from only $19.99.

Our client, a Financial Services Firm, is seeking a Machine Learning Architect:

Responsibilities include:

   • GenAI Architecture Strategy: Develop and implement AI achitecture strategies, best practices, and standards to enhance AI ML model deployment and monitoring efficiency. Develop architecture roadmap and strategy for GenAI Platforms and tech stacks

   • ML Architecture Design and Development: Responsible for the design and development of custom AI architecture for batch and stream processing-based AI ML pipelines including data ingestion to preprocessing to scaled AI model compute and ensure the architecture meets all SLA requirements. Work closely with members of technology and business teams in the design, development, and implementation of Enterprise AI platform

   • Internal Collaboration: Collaborate closely with data scientists, machine learning engineers, and software engineers to ensure smooth integration of machine learning models into production systems.

   • Stakeholder Engagement and Collaboration: Collaborate closely with business and PM stakeholders in roadmap planning and implementation efforts and ensure technical milestones align with business requirements.

   • AI Infrastructure Architecture : Oversee the design of scalable and reliable infrastructure for AI, ML , GenAI, LLM model training and deployment.

   • AI Model Deployment Architecture : Lead the architecture of GenAI, LLM , machine learning models deployment patterns in production environments, with design patterns that ensurie reliability and scalability.

   • AI Monitoring Architecture: Create design of GenAI robust monitoring systems to track model performance, data quality, and infrastructure.

   • Security and Compliance: Implement security measures and compliance standards to protect sensitive data and ensure adherence to industry regulations.

   • Documentation: Maintain comprehensive documentation of AI processes and procedures for reference and knowledge sharing.

   • Standards and Best Practices: Ensure the use of standards, governance and best practices in AI pipeline monitoring and ML model monitoring, and adherence to model and data governance standards

   • Problem Solving: Troubleshoot complex issues related to machine learning model deployments and data pipelines, and develop innovative solutions.

   • Serve as a thought leader in generative AI, influencing both technical strategy and executive-level decisions.

   • Build and scale production-ready AI systems that operate reliably at enterprise levels, ensuring long-term business impact.

   • Exceptional presentation skills to convey technical concepts to non-technical stakeholders.

   • Ability to adapt communication styles to various audiences, from engineers to business stakeholders and executive leadership.

   • Passion for staying ahead of AI trends and leveraging emerging technologies.

   • Strategic thinker and influencer with demonstrated technical and business acumen and problem-solving skills.

Basic Required Qualifications:

   • Bachelor's or Master's degree in Computer Science, Engineering, or a related field highly desired.

   • Experienced professional (8+ years experience) as ML engineer, architect, lead data scientist in Big Data ecosystem or any similar distributed or public cloud platform, with a desire to assume greater responsibilities as a leader and mentor, while still being hands-on

   • 4+ years hands-on experience in ML architecture design and implementation for large-scale enterprise AI solutions and AI products

   • 4+ year’s experience with Business, Product Stakeholder Engagement and Collaboration: Demonstrated success Collaborating with business, product and PM stakeholders in AI roadmap planning and implementation efforts and ensure technical milestones align with business requirements.

   • Experience working in Agile frameworks and delivery methods (scaled Agile, SAFe, etc.).

   • Expertise (4+ years) in the design and development of complex data-driven architectures for distributed computing and orchestration technology (Kubernetes, Ray, Airflow) and scaling

   • Experience with public cloud platform & system architectures (AWS, GCP, Azure)

   • Proficiency with Databricks, MLflow, Flink, or similar AI/ML/ML technologies

   • Experience with SQL, NoSQL, ElasticSearch, MongoDB, and Spark, Python, PySpark for model development and ML Ops

   • Knowledge of DevOps, MLOps principles and practices, and experience with version control systems (e.g., Git) and CI/CD pipelines.

   • Strong familiarity with higher level trends in LLMs and open-source platforms.